Flujo Óptimo de Sistemas Eléctricos de Potencia con Consideraciones Ambientales

Contenido principal del artículo

Diego Lojano
https://orcid.org/0009-0004-7289-7037
Juan Palacios
https://orcid.org/0000-0002-1448-9092

Resumen

Los flujos óptimos de potencia se emplean en sistemas eléctricos para optimizar la distribución de energía eléctrica. En términos generales, se busca minimizar los costos asociados a la generación y distribución de energía eléctrica, mientras se cumplen con las restricciones operativas y de seguridad del sistema. Para lograr esto, se utilizan algoritmos matemáticos que permiten resolver el problema de encontrar el flujo de potencia óptimo, obteniéndose como resultado los flujos en cada línea de transmisión del sistema. Estos algoritmos tienen en cuenta diversos datos de entrada factores, como la demanda de energía, la capacidad de generación de las centrales eléctricas, las restricciones operativas de las líneas de transmisión y los costos asociados a la generación y distribución de energía eléctrica, y tienen como objetivo además buscan maximizar la eficiencia del sistema eléctrico, a través de la minimización de los costos y cumpliendo con las restricciones operativas y de seguridad del sistema. De esta manera en el presente trabajo de investigación se realiza una herramienta propia con programación en MATLAB que determina el flujo óptimo de potencia de un SEP y además considerando las restricciones del sistema, se ha tomado como referencia para el análisis el SEP de 14 barras de la IEEE en donde se obtiene su flujo óptimo de potencia y se analizan las restricciones tanto de emisiones como de costos de los combustibles abarcando de esta manera la optimización de potencia y considerando el tema ambiental.

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Detalles del artículo

Cómo citar
Lojano, D., & Palacios, J. (2025). Flujo Óptimo de Sistemas Eléctricos de Potencia con Consideraciones Ambientales. Revista Técnica "energía", 21(2), PP. 01 – 10. https://doi.org/10.37116/revistaenergia.v21.n2.2025.687
Sección
SISTEMAS ELÉCTRICOS DE POTENCIA
Biografía del autor/a

Diego Lojano

Diego Iván Lojano Chacha was born in Cañar-Azogues in 1988. He received his degree in Electrical Engineering from the University of Cuenca in 2013; Currently, he is pursuing his master's degree in Electricity mentioning electrical power systems at the Technical University of Cotopaxi and his research is related to the optimization of electrical power systems.

Juan Palacios

Juan Pablo Palacios Solórzano was born in Portoviejo - Ecuador in 1980. He received his degree in Electrical Engineering from the Escuela Politécnica Nacional in 2007 and his PhD in Electrical Engineering from the Universidad Nacional de San Juan in 2022. He is currently a Senior Consultant at MRC Consultants and Transaction Advisers, providing consulting services in different projects in the field of electric power and renewable energies in different countries of Latin America and the Caribbean. He is also a visiting professor in different graduate programs in electricity and power systems. His research interests are mathematical optimization, distributed optimization algorithms applied to SEP and smart grids and medium and long term energy planning of SEP.

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